PRDL: Relative Localization Method of RFID Tags via Phase and RSSI Based on Deep Learning

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Abstract

Ultra-high frequency radio frequency identification (UHF RFID) technology has been widely used in many areas, and RFID localization becomes a research hotspot. There are many kinds of research on absolute localization; however, due to some disadvantages of absolute localization, relative localization is more effective in some situations. At present, there are some problems with relative localization: existing methods have low localization accuracy, and it is difficult for them to deal with high-density tags. Aiming at these problems, this paper proposes PRDL: relative localization method of RFID tags via phase and RSSI based on deep learning. By using deep learning, the variation characteristics of RFID phase and RSSI are extracted with limited data accuracy conditions. On this basis, we can infer the relative positional relationship of RFID tags with high accuracy, and design the corresponding sorting algorithm to obtain the sequence arrangement. PRDL has experimented with bare tags and actual books, and the experimental results show that PRDL can achieve better results than the traditional relative localization methods. A series of tests also showed that PRDL has good robustness and generalization ability.

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CITATION STYLE

APA

Shen, L., Zhang, Q., Pang, J., Xu, H., & Li, P. (2019). PRDL: Relative Localization Method of RFID Tags via Phase and RSSI Based on Deep Learning. IEEE Access, 7, 20249–20261. https://doi.org/10.1109/ACCESS.2019.2895129

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